University of Groningen and University Medical Centre Groningen, Center for Research and Innovation in Medical Education, Groningen, the Netherlands.
Med Educ. 2013 May;47(5):453-62. doi: 10.1111/medu.12126.
Traditional student feedback questionnaires are imperfect course evaluation tools, largely because they generate low response rates and are susceptible to response bias. Preliminary research suggests that prediction-based methods of course evaluation - in which students estimate their peers' opinions rather than provide their own personal opinions - require significantly fewer respondents to achieve comparable results and are less subject to biasing influences. This international study seeks further support for the validity of these findings by investigating: (i) the performance of the prediction-based method, and (ii) its potential for bias.
Participants (210 Year 1 undergraduate medical students at McGill University, Montreal, Quebec, Canada, and 371 Year 1 and 385 Year 3 undergraduate medical students at the University Medical Center Groningen [UMCG], University of Groningen, Groningen, the Netherlands) were randomly assigned to complete course evaluations using either the prediction-based or the traditional opinion-based method. The numbers of respondents required to achieve stable outcomes were determined using an iterative process. Differences between the methods regarding the number of respondents required were analysed using t-tests. Differences in evaluation outcomes between the methods and between groups of students stratified by four potentially biasing variables (gender, estimated general level of achievement, expected test result, satisfaction after examination completion) were analysed using multivariate analysis of variance (manova).
Overall response rates in the three student cohorts ranged from 70% to 94%. The prediction-based method required significantly fewer respondents than the opinion-based method (averages of 26-28 and 67-79 respondents, respectively) across all samples (p < 0.001), whereas the outcomes achieved were fairly similar. Bias was found in four of 12 opinion-based condition comparisons (three sites, four variables), and in only one comparison in the prediction-based condition.
Our study supports previous findings that prediction-based methods require significantly fewer respondents to achieve results comparable with those obtained through traditional course evaluation methods. Moreover, our findings support the hypothesis that prediction-based responses are less subject to bias than traditional opinion-based responses. These findings lend credence to prediction-based as an accurate and efficient method of course evaluation.
传统的学生反馈问卷是不完善的课程评估工具,主要是因为它们的响应率低,并且容易受到响应偏差的影响。初步研究表明,基于预测的课程评估方法——学生估算同伴的意见而不是提供自己的个人意见——需要明显较少的受访者即可获得可比的结果,并且受到的偏见影响较小。这项国际研究通过调查进一步支持了这些发现的有效性:(i)基于预测的方法的性能,以及(ii)其潜在的偏差。
参与者(加拿大麦吉尔大学蒙特利尔分校的 210 名一年级医学生和荷兰格罗宁根大学医学中心的 371 名一年级和 385 名三年级医学生)被随机分配使用基于预测的方法或传统的基于意见的方法完成课程评估。使用迭代过程确定达到稳定结果所需的受访者数量。使用 t 检验分析两种方法在所需受访者数量方面的差异。使用多元方差分析(manova)分析两种方法之间以及按四个潜在偏差变量(性别、估计总体成绩水平、预期考试成绩、考试完成后的满意度)分层的学生群体之间的评估结果差异。
三个学生群体的总体回复率在 70%到 94%之间。在所有样本中,基于预测的方法所需的受访者明显少于基于意见的方法(分别为 26-28 和 67-79 名受访者)(p<0.001),而结果相当相似。在基于意见的条件比较中发现了 12 个比较中有 4 个(三个地点,四个变量)存在偏差,而在基于预测的条件比较中只有一个存在偏差。
我们的研究支持之前的发现,即基于预测的方法需要明显较少的受访者即可获得与传统课程评估方法相当的结果。此外,我们的研究结果支持这样一种假设,即基于预测的响应比传统的基于意见的响应受到的偏差更小。这些发现为基于预测的作为一种准确有效的课程评估方法提供了依据。